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FallDS-IoT: A Fall Detection System for Elderly Healthcare Based on IoT Data Analytics

机译:Fallds-IOT:基于IOT数据分析的老年医疗保健秋季检测系统

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Fall represents a major health risk for the elderly people. If the situation is not alerted in time then this leads to loss of life or impairment in the elderly, which reduces the quality of life. In this paper, we solve this problem by introducing a Fall Detection System based on Internet of Things (FallDS-IoT) by designing a wearable system to detect the falls of elderly people. We use Accelerometer and Gyroscope sensors to get accurate results of fall detection. We classify the daily activities of elderly people into sleeping, sitting, walking and falling. We use two well-known machine learning algorithms, namely K-Nearest Neighbors (K-NN) algorithm and decision tree to deal with the above work. The resultant accuracies for our generated dataset were 98.75% and 90.59%, respectively. Therefore, we were able to conclude that K-NN gives more accuracy in detecting falls and this method is used for classification. whenever a fall happens, a message informing about the fall will be sent to a registered phone number through a Python module.
机译:堕落代表了老年人的重大健康风险。如果情况没有及时提醒情况,这导致老年人的生命或减值损失,这降低了生活质量。在本文中,我们通过设计一种可穿戴系统来检测老年人的堕落来引入基于事物(Fallds-IoT)的坠落检测系统来解决这个问题。我们使用加速度计和陀螺仪传感器来获得坠落检测的准确结果。我们将老年人的日常活动分类为睡眠,坐着,走路和下降。我们使用两个着名的机器学习算法,即K-Collect邻居(K-NN)算法和决策树来处理上述工作。我们产生的数据集的所得准确性分别为98.75%和90.59%。因此,我们能够得出结论,K-NN在检测下降方面提供更准确性,并且该方法用于分类。每当跌倒发生时,会通过Python模块向注册的电话号码发送通知秋季的消息。

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